Int Arch Occup Environ Health DOI 10.1007/s00420-015-1019-0

REVIEW ARTICLE

Psychosocial stress at work and cardiovascular diseases: an overview of systematic reviews Alba Fishta · Eva‑Maria Backé 

Received: 8 August 2014 / Accepted: 8 January 2015 © The Author(s) 2015. This article is published with open access at Springerlink.com

Abstract  Purpose  Based on information reported in systematic reviews (SRevs), this study aimed to find out whether psychosocial stress at work leads to cardiovascular (CV) morbidity and mortality. Methods  A systematic search in PubMed and EMBASE (until 2014) used a string based on PICOS components. A manual search was followed. Applying the predefined criteria, two reviewers independently screened the titles, abstracts, selected full texts, and validated their quality. Discrepancies were resolved by discussion between reviewers. Studies of low quality were excluded. Contents of enrolled SRevs were extracted by one reviewer; a second reviewer evaluated their accurateness. Results  The search resulted in 462 records. Six SRevs based on 81 studies (total population: ~1,468,670) fulfilled the inclusion criteria, four of “very good” (++) and two of “good” (+) quality. Excluded records were filed, and reasons for exclusion were documented in all cases. Different stress models were used to measure the work-related stress; the “demand-control model” was most commonly used. The two enrolled meta-analysis confirmed a modest (1.32, 95 % CI 1.09–1.59; Virtanen et al. 2013) to moderate evidence (1.45, 95 % CI 1.15–1.84; Kivimäki et al. 2006), predominantly among men, for the association between psychosocial stress at work and CV outcomes. Due to lacking information, it was not possible to give evidence on the dose–response relationship.

A. Fishta (*) · E.‑M. Backé  Federal Institute for Occupational Safety and Health (BAuA), Nöldnerstraße 40‑42, 10317 Berlin, Germany e-mail: [email protected]

Conclusions  Same to a SRev, an overview of SRev is used to summarize literature and identify areas in which research is needed. This overview can be used to: (a) Disseminate an up-to-date information on work-related stress as a risk factors for CV morbidity and mortality to government, health care providers, workers, and other stakeholders; (b) Encourage governments to better regulate the working conditions and consider work-related psychosocial stress as a hazardous factor that leads to CV diseases or mortality; and (c) Analyze gaps in the literature and provide a summary of research needs. Keywords  Systematic reviews · Work-related psychosocial stress · Job strain · Cardiovascular diseases · Overview of systematic reviews · Stress model

Background Description of the condition WHO (2011) reports that cardiovascular diseases (CVDs), especially coronary heart diseases (CHD), are the number one cause of premature death worldwide. About 17.3 million people died in 2008, representing 30 % of all global deaths, and almost 23.6 million people are expected to die from CVD, mainly from heart disease and stroke, by 2030. Also the estimated disability-adjusted life years (DALYs) are expected to rise from a loss of 85 million DALYs in 1990 to a loss of about 150 million DALYs globally in 2020, classifying CVDs as the leading cause of productivity loss worldwide (Perk et al. 2012). CVDs are reported to have different origins. Among other reasons, epidemiological data confirmed that exposure to work-related psychosocial stress is an important and independent risk factor that

13



Int Arch Occup Environ Health

predicts heart disease including elevation of blood pressure (Chandola et al. 2008; Steptoe and Kivimäki 2012). The etiology of CVD is multifactorial involving genetic, biologic, and psychosocial factors. It is generally accepted that working conditions, gender, and age may be associated with the development of CVDs. Moreover, perceived job stress may vary between workers in certain occupations, enterprises, and also among different occupational groups (at least between blue-collar and white-collar groups) in the same workplace. Enough evidence confirms that, especially long-term and repeated stress experiences predict CV morbidity and mortality. Chandola et al. (2008) report a dose–response relationship between the frequency of stress and CV outcomes. Short-term or acute stress might also cause CV events which is, especially hazardous among individuals with advanced atherosclerosis (Steptoe and Kivimäki 2012). Short-term psychological stress induced transient myocardial ischemia (MI) at patients with CHD (Steptoe and Kivimäki 2012), whereas long-term stress at work increased the risk of recurrent CHD events and predicted CV morbidity and mortality in middle-aged men (Steptoe and Kivimäki 2012; Ohlin et al. 2004).

its specific focus, which means specific questions as well as search strategies leading, e.g., to the inclusion of studies that have not been discussed in other reviews before, an overview of the existing reviews can give a broader perspective of the existing evidence. An OSRev makes sense in case several good and up-to-date SRevs that answer the same or a similar research question exist. Several SRevs were done on this topic, but there has been no OSRev conducted yet. Furthermore, to our knowledge, this is the first OSRev that used a rigorous systematic procedure to generate information from published up-to-date and high quality SRevs. Without a proper summary of the available literature, it is difficult to draw inferences from science to practice. Therefore, not only SRevs but also OSRevs performed in a systematic way according to predefined protocols will increasingly be seen as the key source of information for policy makers and considered as the top of the hierarchy of levels of evidence.

Methods Study procedure

Objective of the overview The objective of this overview is to summarize and interpret the up-to-date evidence commencing from published systematic reviews (SRevs) that answer the research question “Does psychosocial stress at work lead to cardiovascular morbidity or mortality?”. Numerous primary studies but also several SRevs highlight the importance of this association. Per definition, a SRev, attempts to collate all empirical evidence that fulfills pre-specified eligibility criteria to answer a specific research question and provides a summary of the information reported in the individual studies that fulfilled the inclusion criteria (Liberati et al. 2009). An overview of systematic review (OSRev) can follow the same principle except that it does not generate data from primary studies but from SRevs. Since each review has

The study procedure consisted of the following steps: (a) formulation of a clear, specific, and structured PICOS research question, (b) determination of the systematic search strategy by defining the search terms and electronic databases, (c) literature screening by applying the predefined inclusion and exclusion criteria, (d) quality evaluation of each SRev, (e) data extraction from enrolled SRevs, (f) summary of the results, (g) discussion and interpretation of study results, and h) identification of the need for further research. Criteria for considering reviews for inclusion The searching process was done following a structured approach, and the study inclusion and exclusion criteria

Table 1  Study inclusion and exclusion criteria Inclusion criteria

Exclusion criteria

Included reviews searched systematically in at least one electronic database Research question based on PICOS/PEOS  P workers  E psychosocial stress at work  O CV morbidity or mortality  S systematic review   Language articles published in a European language

Wrong research question (wrong PICO question) S systematic review  Non-systematic review  Published in a non-European language  Published before year 2000  Animal and human experimental studies

  Publication year articles published after year 2000

13

Int Arch Occup Environ Health Table 2  Search string for the MEDLINE via PubMed search (((((occupation* OR worker*) OR (occupational diseases [MH] OR occupational exposure [MH] OR occupational medicine [MH] OR occupational risk [TW] OR occupational hazard [TW] OR (industry [MeSH Terms] mortality [SH]) OR occupational group* [TW] OR workrelated OR occupational air pollutants [MH] OR working environment [TW])) AND (((psychosocial[All Fields] AND (“Stress”[Journal] OR “stress”[All Fields])) OR (“stress, psychological”[MeSH Terms] OR (“stress”[All Fields] AND “psychological”[All Fields]) OR “psychological stress”[All Fields] OR (“psychological”[All Fields] AND “stress”[All Fields]))) AND (“cardiovascular diseases”[MeSH Terms] OR (“cardiovascular”[All Fields] AND “diseases”[All Fields]) OR “cardiovascular diseases”[All Fields]))) AND (meta-analysis as topic [mh] OR meta-analysis[pt] OR meta-analysis [tiab] OR review[pt] OR review [tiab]) NOT (letter[pt] OR editorial[pt] OR comment [pt]) NOT ((animals [Mesh:noexp]) NOT (humans [Mesh]))) AND (“2000/01/01”[PDAT]: “2014/01/6”[PDAT]))

were defined a priori (Table 1; PEROSH 2011). A search strategy was formulated to systematically seek out systematic reviews and meta-analysis that answer the research question: “Does psychosocial stress at work lead to CV diseases or mortality?”. The specification of the key research question was done by defining the ‘PICOS’ components (P-population, I-intervention or exposure, C-control or comparison group, O-outcome, and S-study design). Accordingly, we included studies on workers (P) exposed to psychosocial stress at work (E) that had an outcome of CV morbidity or mortality (according to ICD-10, codes I00–I99) including the coronary heart diseases (CHD; I70), acute or subsequent myocardial infarction (MI; I21– I22) and other acute or ischemic heart diseases (I24–I25), angina pectoris (I20), heart insufficiency (I50), but excluding cerebrovascular accidents such as strokes (I60–I69), and defined arterial hypertension (I10–I11; O) (WHO 2010). In case enrolled SRevs used an older ICD version, we converted the used code for the diagnoses into the corresponding ICD-10 code. All studies dealing with CV outcomes such as sub-clinical atherosclerosis, blood pressure described as a metric variable, and other subclinical measures as well as gestational hypertension, pregnancy-related CV diseases, heart diseases with genetic origin, and neoplasms of the CV system were excluded. Exposure to several work-related factors such as physical, chemical, biological, and psychological factors can lead to stress. In this study, we focused exclusively on the exposure to so-called psychosocial stressors at work including job insecurity. These stressors are extremely diverse and can be very different depending on the type of job. Studies dealing explicitly with exposure to bullying, precarious employment relationship (such as type of contract and duration of employment), shift work, or emotionally stressful work were excluded. Non-systematic reviews such as narrative reviews and publications where a full text was not available were excluded. We have restricted our search to reviews that were written in one of the European languages. Studies published before year 2000 were also excluded as they could be outdated. Studies that based their results on animal experimentation were excluded (PEROSH 2011).

Searching methodology for identification of reviews Following the OSH Evidence criteria for searching systematic reviews (PEROSH 2011), the systematic literature search was carried out in two relevant electronic databases (MEDLINE and EMBASE). One author (AF) ran the search for the period 01 January 2000–6 January 2014. For the search in MEDLINE (via PubMed), based on the PICOS question, we defined the search terms and prepared a “specific” search string (Schaafsma et al. 2006; Verbeek et al. 2005; Mattioli et al. 2010) which was then translated and used for the search in the EMBASE database (Table 2). Data collection and analysis Initially, two reviewers (AF and EMB) screened the titles and abstracts of the identified literature independently from each other and eliminated irrelevant papers which did not fulfill the predefined criteria. The final study selection was based on their full texts and was done again blindly by two reviewers (AF and EMB). In both steps, discrepancies were solved by discussion between the two reviewers and reasons for exclusion were documented in all cases. The results of the selection process are summarized in a PRISMA diagram (Liberati et al. 2009; Fig. 1). Assessment of the methodological quality of included systematic reviews Once the papers have been selected, a quality assessment of the methodology of each retrieved SRev was made by two reviewers independently (AF and EMB) using an expanded version of the Scottish Intercollegiate Guidelines Network (SIGN) checklist for systematic reviews and meta-analyses (SIGN 2012). Discrepancies were solved by discussion. Reviews at the highest quality and with very low risk of bias or confounding are scored as “++”. In this case, according to OSH Evidence Methods (PEROSH 2011), the SRev or meta-analysis was scored as “well covered” or “adequately addressed” for all five SIGN questions and at least two questions were scored as “well covered”. SRevs with a good quality and low risk of bias or

13



confounding are scored as “+”. This means that the review was scored as “adequately addressed” or “well covered” for at least three of the five SIGN questions. The systematic reviews with low quality and high risk of bias or confounding scored as “−” are excluded; they were scored as “adequately addressed” for three or less than three of the five SIGN questions. All quality assessment checklists are documented. Data extraction and synthesis One reviewer (AF) systematically extracted the following data from all six included SRevs: population (sample size, gender), exposure, outcome, study design of studies included in the review, search strategies (searched databases, follow-up and searching period), results with regard to exposure and outcome/s, methodological quality assessment that was used to evaluate the quality of enrolled studies, methods used to validate the association between exposure and outcome/s (including the used stress model to measure the exposure), potential biases and the funding source. An additional reviewer (EMB) did a quality check of the data extraction. Methods to measure stress exposure It remains important to use appropriate methods for measuring stress. The increasing concern that psychological conditions and social factors at work influence the worker’s well-being has led to the detection of several risk factors and development of epidemiological theoretical models. The extent to which work stress and health outcomes correlate with each other varies depending on the model used to measure exposure to work characteristics. The first attempts to measure job-related stress and CVD started in 1960s by developing numerous tools such as questionnaires and interviews (Landsbergis et al. 2000). The main theoretical models used nowadays to describe stress at the workplace are the demand-control or the job strain (JS) model (Karasek et al. 1998; Karasek 1979; Karasek and Theorell 1990) and the effort-reward imbalance (ERI) model (Siegrist et al. 1990; Siegrist 1996). Further dimensions are also being used to evaluate work-related stressors. The demand-control model (Karasek and Theorell 1990) is based on psychosocial characteristics of work. The model is being used in relation to CVD in numerous epidemiological studies and now operates with three main dimensions: (a) psychological job demands, (b) job control or decision latitude, and (c) social support at work. According to this model, workers with jobs characterized by high psychological demands in terms of workload, low

13

Int Arch Occup Environ Health

control over working conditions (decision latitude), and lack of social support at work (isostrain) are assumed to have the highest risk of poor psychological well-being and ill health. On the other side, high control and low demand are the most beneficial to health (Karasek and Theorell 1990). Due to the fact that social support at work has shown to modify the strain that might lead to stress, some studies evaluate the dimension of social support in combination with the JS model (the so-called isostrain model; Johnson et al. 1989). Most studies use two measures of social support: the supervisors support and co-workers support. A Job Content Questionnaire (JCQ) is used to measure job stressors. The effort-reward imbalance (ERI) model (Siegrist et al. 1990; Siegrist 1996) is an alternative and important model that is being used in occupational health research to evaluate stress. The model is based on the premise that workrelated stress happens due to lack of reciprocity at work. Siegrist et al. define threatening job conditions as a mismatch between efforts or high workload (high demand) and low control over long-term rewards consisting of money, esteem, and job security or career opportunities (Siegrist et al. 1990; Siegrist 1996). In summary, according to the ERI model, work characterized by both high efforts and low rewards in terms of salary, esteem, or job security represents a reciprocity deficit between ‘‘costs’’ and ‘‘gains’’. Working hard without receiving appreciation is an example of a stressful imbalance that increases health problems. Additionally, to effort and rewards, the ERI model includes a third component—overcommitment—which refers to a set of attitudes, behaviors, and emotions reflecting excessive striving in combination with a strong wish to be approved and esteemed. The Organizational Justice (OJ) dimension defines the quality of social interaction at work and evaluates the decision-making rules and managerial behaviors within the organization. It is used to evaluate the extent to which people perceive that they are treated fairly by their supervisors and assumes that stress-related disease happens because the individual does not feel treated fairly in the organization (Elovainio et al. 2010). The dimension evaluates the extent to which employees are treated justly and whether the outcomes obtained and the processes carried out at the workplace are fair. In this case, workers seem to be affected not only by rewards as such, but also by the procedures used to determine how they will be distributed (Elovainio et al. 2002). Originally, the dimension was used to evaluate the distribution of justice and perception of equity (Elovainio et al. 2010). Besides stress described in these models, there are also further factors, e.g., job insecurity that contributes to the perception of stress at the workplace (Table 5).

Int Arch Occup Environ Health

Results Literature search for identification of reviews All 473 search matches (MEDLINE: N  = 85, EMBASE: N = 377, hand searching: N = 11) were merged and stored in the literature database Reference Manager 12. After eliminating the duplicate references, titles and abstracts of the remaining publications (N  = 466) were screened and full texts for all articles not eliminated at this step were obtained. After a full text screening (N  = 67), only six SRevs met the prerequisites to be included in this OSRev. The list of excluded studies can be obtained by contacting the authors. The study identification process is illustrated in Fig. 1 using the PRISMA flow diagram for reporting SRevs and meta-analyses (Liberati et al. 2009; Moher et al. 2009). Description of included reviews The epidemiologic evidence is derived from six SRevs (Belkic et al. 2004; Netterstrøm and Kristensen 2005; Kivimäki et al. 2006; Eller et al. 2009; Backé et al. 2012; Virtanen et al. 2013) and includes a total of 81 studies and a population of approximately 1,468,670 individuals (Table  5). All SRevs measured the relationship between psychosocial conditions at work and CV morbidity and mortality. In two SRevs, a meta-analysis was conducted (Kivimäki et al. 2006; Virtanen et al. 2013). Generally, three different measures of exposure were considered: (a) objective evaluation of the stressors, (b) subjective or selfreported stressors, and (c) the so-called ecologic method (Walter 1991a, b). Although different models were used, all reviews considered the exposure to psychosocial stress at work and comparable cardiovascular outcomes. There are enough similarities between the studies to combine them in a reasonable way.

2. 3.

Records idenfied in PubMed (N= 85) and EMBASE (N= 377) N= 462

Records idenfied through manual search N= 11

Duplicates N= 7

Records excluded N= 399

Screened tles & abstracts N= 466

Records excluded N= 61

Screened full texts N= 67 Included systemac reviews N= 6

Reasons for exclusion: • Language: 3 (Chinese, Japanese, Vietnamese) • Duplicates: 1 • Full texts not available: 4 • Other reasons: 53 (e.g. wrong PICOS, did not fulfill the inclusion criteria)

Fig. 1  Flow diagram of the process of literature search and identification of SRevs eligible for inclusion in the OSRev

Due to the fact that enrolled SRevs answered the same or similar PICOS question(s) and that their period of literature searching overlapped partially, to some extent they were based on the same primary studies. However, they differed from each other in aspects such as quality, methodology used for measuring the exposure, considered outcomes, criteria used to include and exclude studies, and also in the interpretation of the results they found. The degree of overlap in studies and population is presented in Table 3 (the original data analyzed for this matrix can be obtained by contacting the authors). All SRevs report that consistent evidence confirms a significant association between psychosocial stressors at work and CV morbidity or mortality. Due to lacking studies, this association was confirmed mainly among men and only some (not entirely consistent) evidence was found among women. The strength of the association was dependent on the methods or models that were used to measure and evaluate stress-related conditions at work as well as the target population or population subgroups that were examined. All SRevs disclosed a number of significant and nonsignificant trends toward associations and showed a large variation in the measurements of exposure and study designs. Working under high strain compared to low strain causes a significant risk of developing a CVD; a modest to moderate association was reported (risk estimates: 1.33–2.62; Backé et al. 2012). A modest association was reported for high effort versus low reward (RR 1.58, 95 % CI 0.84–2.97; Kivimäki et al. 2006) as well as for perceived job insecurity and incident CHD (RR 1.32, 95 % CI 1.09–1.59; Virtanen et al. 2013). Quality validation of included reviews The methodological validation of the six SRevs included in this OSRev, according to our criteria, showed that they varied in their quality (Table 4). Four SRevs were of highest quality and limited risk of bias (++) (Belkic et al. 2004; Netterstrøm and Kristensen 2005; Backé et al. 2012; Virtanen et al. 2013), and two SRevs were of high quality and low risk of bias (+) (Eller et al. 2009; Kivimäki et al. 2006). SRevs of low quality and high risk of bias (−) were excluded. Three SRevs (Netterstrøm and Kristensen 2005; Kivimäki et al. 2006; Eller et al. 2009) had a rather broad research question; the PICO question or its elements could have been more specific and well-defined to achieve higher quality. With regard to the methodology, description of the data extraction and data synthesis was missing in four SRevs (Belkic et al. 2004; Netterstrøm and Kristensen 2005; Eller et al. 2009; Backé et al. 2012). Furthermore, a good SRev should use clear criteria to assess whether individual studies were well conducted before deciding

13



Int Arch Occup Environ Health

Table 3  Overlap matrix of studies and considered populations

∑ = 81 studies Populaon = ~1 468 670 Backé (2012) No. Studies: 20 (5*) Populaon: ~216 821 Belkic (2004) No. Studies: 34 (3*) Populaon: ~1 119 533 Eller (2009) No. Studies: 33 (8*) Populaon: ~1 228 964 Kivimäki (2006) No. Studies: 14 (3*) Populaon: ~95 069 Neerstrøm (2005) No. Studies: 35 (14*) Populaon: ~1 132 693 Virtanen (2013) No. Studies: 17 (14*) Populaon: ~ 175 195

Backé (2012) No. Studies: 20 (5*) Populaon: ~216 821

Belkic (2004) No. Studies: 34 (3*) Populaon: ~1 119 533

Eller (2009) Kivimäki (2006) No. Studies: 33 (8*) No. Studies: 14 (3*) Populaon: ~1 228 964 Populaon: ~95 069

Neerstrøm (2005) Virtanen (2013) No. Studies: 35 (14*) No. Studies: 17 (14*) Populaon: ~1 132 693 Populaon: ~ 175 195

No. Studies: 20 (5*) Populaon: ~216 821

No. Studies: 4 Populaon: ~47 910

No. Studies: 13 Populaon: ~126 036

No. Studies: 9 Populaon: ~67 491

No. Studies: 4 Populaon: ~47 910

No. Studies: 34 (3*) Populaon: ~1 119 533

No. Studies: 10 No. Studies: 7 Populaon: ~1 043 800 Populaon: ~63 372

No. Studies: 14 No. Studies: 0 Populaon: ~1 055 318 Populaon: 0

No. Studies: 13 Populaon: ~126 036

No. Studies: 10 Populaon: ~1 043 800

No. Studies: 33 (8*) No. Studies: 10 Populaon: ~1 228 964 Populaon: ~64 008

No. Studies: 15 No. Studies: 2 Populaon: ~1 053 390 Populaon: ~51 897

No. Studies: 5 Populaon: ~48 432

No. Studies: 7 Populaon: ~63 372

No. Studies: 10 Populaon: ~64 008

No. Studies: 7 Populaon: ~63 372

No. Studies: 9 Populaon: ~67 491

No. Studies: 14 Populaon: ~1 055 318

No. Studies: 15 No. Studies: 7 Populaon: ~1 053 390 Populaon: ~63 372

No. Studies: 1 No. Studies: 35 (14*) Populaon: ~1 132 693 Populaon: 314

No. Studies: 2 Populaon: ~15 301

No. Studies: 0 Populaon: 0

No. Studies: 2 Populaon: ~51 897

No. Studies: 1 Populaon: 314

No. Studies: 5 Populaon: ~48 432

No. Studies: 14 (3*) Populaon: ~95 069

No. Studies: 0 Populaon: 0

No. Studies: 2 Populaon: ~15 301

No. Studies: 0 Populaon: 0

No. Studies: 17 (14*) Populaon: ~ 175 195

Studies marked (*) can only be found in this systematic review

whether to include or exclude them (SIGN 2012). One SRev (Kivimäki et al. 2006) did not report to have done the quality validation of included studies. Netterstrøm and Kristensen (2005) included in their SRev studies of low quality (29 of the 35 studies included achieved a quality score of 16 from 25 points). In another SRev (Eller et al. 2009), the studies were evaluated for their quality but a sensitivity analysis to exclude studies at low quality was not done. Four SRevs (Belkic et al. 2004; Netterstrøm and Kristensen 2005; Kivimäki et al. 2006; Eller et al. 2009) additionally limited their literature search in the MEDLINE database to manually searching key journals and following up reference lists of included studies. Searching in further relevant electronic databases such as EMBASE, PSYNDEX, and PsycINFO could have been done to decrease the probability of missing important literature. Only in one SRev (Eller et al. 2009), the inclusion and exclusion criteria were not clearly described in order to be able to evaluate whether the selected studies are similar and therefore easily combinable. In the remaining five SRevs (Belkic et al. 2004; Netterstrøm and Kristensen 2005; Kivimäki et al. 2006; Backé et al. 2012; Virtanen et al. 2013), the key research question was fully answered and there were enough similarities between the studies selected to justify combining them. Main results with regard to the research question and its PICOS elements (see also Table 5) Study population (P) The association between job stress and CV outcomes was consistent among men, and some evidence (not

13

entirely consistent) was found for women. Most studies included in each SRev involved only men; there were too few studies on women to draw conclusions (Backé et al. 2012; Eller et al. 2009). A gender and age difference was reported in individual studies (Chandola et al. 2008) but, due to a lack of available investigations where gender stratification was done, no conclusions were drawn in the enclosed reviews. For example, in their SRev, Kivimäki et al. (2006) report that a complete test of gender differences in the association between job stress and CHD was not possible because there were only two studies available that report only risk ratios for both men and women in combination. Belkic et al. (2004) report that women are more likely than men to have low levels of control over their work, and the ones working in jobs with low decision latitude are expected to have higher psychological demands. Therefore, women are several times more likely than men to hold high-strain jobs, whereas men’s highdemand jobs are generally to some extent accompanied by higher decision latitude. Furthermore, women (the same holds for men) could be stressed for other reasons such as unpaid work at home, changing hormones, home and family responsibilities, or the marital status. For example, based on individual studies, Kivimäki et al. (2006) report that low control at home predicts CHD among women but not among men and a combination of stress at home and at work predicts perceived symptoms among women. Given that CVD is by far the biggest cause of death in women (Perk et al. 2012) and that women develop CHD later in life than men (Conroy et al. 2003), using subclinical disease measures as tools to examine psychosocial hypotheses in women earlier in the pathogenesis of CHD is crucial (Low et al. 2010).

1.5 Similarities between the studies selected to combine them reasonably Well covered  (there are enough similarities between the selected studies to justify combining them; the research question is answered) Well covered  (there are enough similarities between the selected studies to justify combining them; the research question is answered) Well covered  (there are enough similarities between the selected studies to justify combining them; the main research question are answered) Adequately addressed  (the study inclusion and exclusion criteria are not clearly described in order to evaluate whether the selected studies are similar to justify combining them) Well covered  (there are enough similarities between the selected studies to justify combining them in a meta-analysis; the research question is answered)

Well covered  (quality evaluation of included studies is done)

Adequately addressed Adequately Well covered addressed  (description  (a systematic search is  (A clear, specific and done in MEDLINE and well-defined question is of the data synthesis is with manual searching. missing) addressed) Additional databases could be searched)

1.2 A description of the methodology used

1.4 Assessment of the study quality

Well covered  (quality evaluation of included studies is done)

Well covered  (a systematic search is done in MEDLINE, Cochrane Library, EMBASE, PSYNDEX, PsycINFO and with manual searching) Adequately addressed  (a systematic search is done in MEDLINE and with manual searching. Additional databases could be searched)

Poorly addressed Adequately addressed  (the systematic search is  (quality evaluation of only done in MEDLINE included studies is not there) and manual searching. Additional databases could be searched)

Adequately addressed Well covered  (data extraction and  (a clear, specific and well-defined question is description of the data synthesis is missing) addressed)

Adequately addressed Adequately addressed  (PICO elements could be  (description of the data synthesis is missing) more specific. The used search string or search terms are not available)

Adequately addressed Adequately addressed  (PICO elements could be  (quality assessment is not described) more specific)

(Backé et al. 2012)

(Eller et al. 2009)

(Kivimäki et al. 2006)

Adequately addressed  (quality evaluation of included studies is done; a sensitivity analysis to exclude the studies at low quality is not done)

Well covered  (quality evaluation of included studies is done)

Adequately addressed  (a systematic search is done in MEDLINE and with manual searching. Additional databases could be searched)

Adequately addressed Adequately addressed  (PICO elements could be  (data synthesis and study inclusion and more specific) exclusion criteria are not described)

1.1 An appropriate and clearly focused question

1.3 Sufficiently rigorous literature search to identify all relevant studies

1 Internal validity

(Netterstrøm and Kristensen 2005)

(Belkic et al. 2004)

Enrolled SRev First Author, Publication year

Table 4  Study validation according to SIGN Quality Assessment for Systematic Reviews and Meta-Analyses

+

+

++

++

++

2. Overall grading of the study quality (++/±)

Int Arch Occup Environ Health

13

Int Arch Occup Environ Health

1.5 Similarities between the studies selected to combine them reasonably

++ Well covered  (there are enough similarities between the selected studies to justify combining them; the research question is answered) Adequately addressed  (quality evaluation of included studies is not mentioned)

13

Significant heterogeneity in psychosocial stress was a problem of the study population enrolled in all studies included in each SRev. Backé et al. (2012) report that most of the studies enrolled in the SRev have not been specifically designed to answer the question whether there is an association between work stressors and CV outcomes. Only three out of six enclosed reviews report on the influence of cultural variation and country differences (Eller et al. 2009; Kivimäki et al. 2006; Netterstrøm and Kristensen 2005). Most studies were conducted in the US and Europe (UK, Denmark, Germany, Sweden, Spain, Belgium, and Finland, and most of them in the Nordic countries); one study was performed in Asia (Japan). Eller et al. (2009) report that all studies conducted in the Nordic countries report a positive and significant association between job stress and CHD. All five US studies enrolled in the SRev of Netterstrøm and Kristensen (2005) report no or only partial association between psychosocial job factors and ischemic heart disease (IHD). The 11 studies showing a positive association were carried out in the UK, Sweden, the Czech Republic, and Denmark (Netterstrøm and Kristensen 2005).

Well covered Well covered  (a detailed description  (A clear, specific and well-defined question is of the methodology used is included) addressed)

Well covered  (a systematic search is done in MEDLINE, EMBASE, Web of Science and manual searching)

Exposure measures (I)

(Virtanen et al. 2013)

1.1 An appropriate and clearly focused question

Enrolled SRev First Author, Publication year

Table 4  continued

1 Internal validity

1.2 A description of the methodology used

1.3 Sufficiently rigorous literature search to identify all relevant studies

1.4 Assessment of the study quality

2. Overall grading of the study quality (++/±)



To evaluate the characteristics of the workplace and to analyze the most important job stressors, studies enrolled in each SRev used the theoretical models, a modification of these models or further dimensions. Five SRevs (Backé et al. 2012; Belkic et al. 2004; Eller et al. 2009; Kivimäki et al. 2006; Netterstrøm and Kristensen 2005) report that the mostly used stress model was the job strain Model (Karasek et al. 1998; Karasek 1979; Karasek and Theorell 1990). Using the JS model, compelling evidence showed that low decision latitude is predictive for future CV morbidity and mortality. In the SRev of Belkic et al. (2004), eight investigations overall showed significant positive results with effect sizes (range for men: OR  = 1.21, 95 % CI 1.08–1.35–4.0, 95 % CI 1.1–14.4; range for women: 1.3, 95 % CI 1.1–1.6–SMR = 164, 95 % CI 112–233). Limited data on workplace interventions aiming to increase decision-making latitude or diminish psychological demands (e.g., by reducing time pressure) showed favorable changes in mediators relevant to the CV system (e.g., blood pressure or the catecholamine and lipid profile; Belkic et al. 2004). Social support was, in consensus, reported in all SRevs as a potential confounder for job stress, and the association between stress at work and CVD could have been influenced by the social class which would act as an effect modifier (Belkic et al. 2004). None of the enclosed SRevs report on the duration of exposure. Exposure was mostly measured at one point in

Results according to stress models used to measure the exposure

PICOS

„Effort Reward Imbalance (ERI)“, Siegrist et al. 1996)

“Job strain (JS) or demand-control model” (Karasek and Theorell 1990)

Study design (of included studies) / Follow-up / search period / SRev quality

Outcome

Exposure

~ Population (No. of included studies) / Gender

- 3/3 studies (4 publications): statistically significant associations

The model is used.

- 13/13 studies: employers working under high strain were significantly at higher risk to develop CVD than the ones working under lowstrain (risk estimates: 1.33 - 2.62) - 7/13 studies (17 publications): significant associations - 2/3 studies: positive association between “isostrain” (high job strain and lack of social support at work) and CVD.

Note: Number of studies measuring the association between stress and CVD is not reported.

The model is used.

Note: Number of studies measuring the association between stress and CVD is not reported.

SRev (9 case control, 17 longitudinal and 8 cross sectional studies) / 1 – 25.6 yrs / 1966 - Jan. 2002 (Medline, hand search) / ++

- 1/4 analyses (M): high effort and low reward was associated with increased risk for IHD - 1/4 analyses (using proxy measures of Whitehall II): no associations - 1/4 analyses: non-significant trend towards an association between a measure of ERI in a life-course perspective and the risk of IHD

Control (decision latitude) - 3/13 studies: significantly positive associations between lack of control and increased risk for IHD - 2/4 studies (W): confirmed the association between lack of control and IHD

Demand - 6/16 studies (M) (e.g. intense work without breaks, extreme work load): significant positive association with IHD - 1/16 studies (M): significant negative association - 4/11 studies (M): significant positive association between job stress and an increased risk of IHD - 1/5 studies (W): significant positive association with risk of IHD - 4/4 studies (W): trends toward associations between job stress and incidence of IHD

SRev (26 prospective cohort, 7 case control studies) / 1 –25.6 yrs / 1985-2008 (MEDLINE, hand search) / +

CV morbidity or mortality (Definite CHD, angina pectoris, acute IHD)

CV morbidity or mortality (CHD, IHD, Angina pectoris)

SRev (20 prospective cohort studies) / 2 – 25.6 yrs / 1977 – Mar. 2010 (MEDLINE, Cochrane Library, EMBASE, PSYNDEX, PsycINFO) / ++

CV morbidity or mortality (CHD, IHD, HF, Angina pectoris, defined hypertension)

Work load /Job insecurity / Workrelated injustices

~1 228 964 (33) / M+W

- 3/3 cohort studies: positive association between work stress and CHD. - Age and gender adjusted summary estimate for high effort and low reward: RR=1.58 (95%CI: 0.84 – 2.97). Multiple adjustments for risk factors and potential mediators did not reduce RR (2.05, 95%CI: 0.974.32).

- 8/10 studies: positive association between work stress and CHD. Age and gender adjusted summary estimate for high demands and low control: RR=1.45 (95%CI: 1.15 – 1.84). Multiple adjustments for risk factors and potential mediators reduced RR (1.16, 95%CI: 0.94-1.43) - 2/10 studies: nonsignificant negative association

MA (14 prospective cohort studies) / + / 3.2 – 25.6 yrs / 1979 - Jan. 2006 (PubMed, hand search, experts interviews) / +

CV morbidity or mortality (IHD, Angina pectoris, hypertension etc.)

Job stress

~95 069 (14) / M (52%) + W (48%)

Enrolled Systematic Reviews ( ) Eller 2009 Kivimäki 2006

Job stress

~1 073 548 (34) / M+W

~216 821 (20) / M+W Job stress

Belkic 2004

Backé 2012

Table 5  Characteristics of the original systematic reviews

MA (4 prospective cohort, 13 unpublished cohort studies) / 3.2 – 21.2 (mean 9.7) years / till October 2012 (MEDLINE, EMBASE, Web of Science, hand search) / ++ The model is not used.

CHD, non-fatal IHD and mortality

Job insecurity (selfreported)

~ 175 195 (17) / M (15 studies) +W (13 studies)

Virtanen 2013

- 3/3 studies: positive association between ERI at work and IHD

- 11/19 studies: clear and positive association between job stress and IHD - 3/19 studies: partial association - 5/19 studies: negative association (3/5 used the ecological method as measure of exposure (JEM)

SRev (18 cohort, 17 case control studies) / 2 – 25 yrs / Sep. 1992 – Sep. 2003 (MEDLINE, hand search) / ++

IHD

Psychological workload

~1 132 693 (35) / M+W

Netterstrøm 2005

Int Arch Occup Environ Health

13

13

Further dimensions - Organizational injustice (OI) - Job insecurity - Other exposure measurements

Table 5  continued

Other exposure measurements - 3/6 studies: elevated risk of CVD following psychosocial stress - 1/6 studies using a model that is comparable to ERI: significant results - 2/6 studies using indices consisting of several items related to stress: significant results - 3 analyses: significant associations of temporal changes in job stress or cumulative stress with CVD -

16

Job insecurity: - 2/5 studies (M): significant positive association between job insecurity and IHD

OI - 2/5 studies (M): significant positive association between a feeling of injustice and IHD

OI 2/2 studies: positive association between work stress and CHD. Age and gender adjusted summary estimate for OI: RR= 1.62 (95%CI: 1.242.13). The risk remained significant after additional adjustments for other risk factors and potential mediators including JS and ERI (RR=1.47, 95%CI: 1.12-1.95).

Job insecurity: - Gender adjusted RR: The overall estimate suggested a RR of 1.32 (95% CI 1.09 - 1.59) for high job insecurity among men and women. Some degree of heterogeneity was detected (I2=40.7% for the overall estimate (P=0.014), I2=43.7% among men (P=0.036), and I2=37.3% among women (P=0.085)). High job insecurity was associated with higher incidence of CHD among men (RR 1.24; 95% CI 0.98 - 1.57); the association was significant. The RR of CHD for high job insecurity among women was 1.47 (95% CI: 1.07 - 2.02). - Age adjusted RR of high versus low job insecurity: 1.32 (95% CI: 1.09 - 1.59). Among participants aged ≥50, the adjusted RR was 1.26 (95% CI 1.02 - 1.57). - RR of job insecurity adjusted for sociodemographic and risk factors: 1.19 (95% CI: 1.00 - 1.42). No evidence of significant differences in this association by sex, age (7%), welfare regime or job insecurity measure. No clear evidence to suggest effect modification by age or other subgroup variables examined (P>0.10 for all subgroup differences). Participants with low socioeconomic status were more likely to report job insecurity. Regarding CHD risk factors, insecure participants were less likely to be physically -

Int Arch Occup Environ Health

- All studies using ERI and ~50% studies using JS model revealed an impact of work stress on CVD

- 10/15 analyses (M): significant positive association - 1/9 analyses (W): significant positive association

- 13/20 studies (40 publications): significant increased risk of CVD due to psychosocial stress at the workplace

– 11/20 studies (14/26 publications) (M and W): significant associations between psychosocial stress and CVD

Cross sectional studies - 4/8: significant positive association for job strain and CVD - 2/8: positive but not statistically significant association - 2/8: null results - 3/8: significant positive associations (M)

Case control studies - 6/9: significant positive association - 2/9: positive but not statistically significant association - 1/9: null results

Longitudinal studies - 8/17: significant positive association for job strain and CVD - 3/17: positive but not statistically significant association - 6/17: null results

- Most studies used the JS model (JS: N=23, ERI: N=4, both models: N=2)

- 3/5 studies (M), 1/4 studies (W): significantly increased risk for IHD among participants lacking social support; - 2/5 studies (M) and 3/4 studies (W): trends toward increased risk for IHD

- 14% of the USA studies: significant association between a psychosocial work factor and IHD

- 100% of studies conducted in Nordic countries (73% of all studies): significant association between a psychosocial work factor and CHD

- 24/69 analyses (only M or only W): significant positive association between an undesirable psychosocial factor at work and increased risk for IHD - Most studies used the JS Model (JS: N=11, ERI: N=3, IJ: N=2)

- Work stress is associated with 50% excess risk for CHD.

- 19/29 studies of high quality (scored at least 16/25): positive association between psychosocial factors at work and IHD

- No statistical evidence to suggest effect modification of the association between job insecurity and CHD by sex, age, study context or the type of job insecurity assessed

- Most studies used the JS model (JS: N=19, ERI: N=3)

- 23/35 studies (9/18 cohorts, 14/17 casecontrol): significant association between psychosocial workload and IHD - 3/35 studies: nonsignificant association - 9/35 studies: no association

- Modest association between self-reported job insecurity and incident CHD (RR 1.32 (95% CI 1.09 - 1.59)), which is poorer socioeconomic circumstances and less favourable risk factor profiles among people with job insecurity

M men, W women, JS job strain, CHD coronary heart disease, CVD cardiovascular disease, HF heart failure, IHD ischemic heart disease, MA meta-analysis, MI myocardial infarction, IHD ischemic heart disease, SRev systematic review, Yrs years

Summary of results

Table 5  continued

Int Arch Occup Environ Health

time only. Generally, there was limited evidence available regarding exposure in specific occupations, and there was no evidence for specific occupational groups. Insufficient evidence was reported for a relationship between the IHD and job stress using ERI (Backé et al. 2012; Belkic et al. 2004; Kivimäki et al. 2006; Netterstrøm and Kristensen 2005), and IHD and injustice, or long working hours (Eller et al. 2009). In contrast to Eller et al. (2009), the recent review of Virtanen et al. (2013) reports a modest correlation between job insecurity and CVD (RR 1.32, 95 % CI 1.09–1.59; Table 5).

Outcomes (O)

Since most of the studies included in SRevs investigated CVD as a whole, it was not possible to evaluate whether job stress acts differently in relation to specific outcomes alone, e.g., myocardial infarction (MI), angina pectoris, hypertension, or stroke within the same study population. One review (Backé et al. 2012) reports significant results for six out of 14 publications investigating CHD and for five out of seven articles on CVD. One of the two publications on hypertension, one of the two publications on stroke, and one publication on angina pectoris revealed statistically significant positive associations. One SRev (Eller et al. 2009) reports that sudden death was included as an end point in some studies, but it does not always happen due to MI. Arrhythmia may very well be originated by the same conditions as ischemic heart disease on the basis of atherosclerosis; however, the time from exposure to outcome may be much shorter (Eller et al. 2009). Work stress also has an impact on CV re-events (e.g., after MI) (Aboa-Éboulé et al. 2011) or on the prognosis of other CVD. None of the enrolled SRevs analyzed the prognostic association between work stress and CVD. A reason could be the incompleteness of data available. Backé et al. (Backé et al. 2012) argued that detailed job descriptions were lacking in most of the studies included in the SRevs.

Discussion of quality, overall completeness, and applicability of evidence

Interaction mechanisms

Multiple patho-physiological mechanisms which stimulate vascular inflammation and atherosclerosis are involved in the stress response (Black 2006). These mechanisms activate the autonomic nervous system and might deregulate the hypothalamic pituitary adrenal axis resulting in increased adrenaline and cortisol secretion patterns and development of the metabolic syndrome (Chandola et al. 2008; Black 2003). The CV system is consequently

13



prone to: (a) increased heart and blood flow rate due to which the heart might retain an abnormal rhythm or problems of its muscle, (b) elevated blood pressure due to which the CV system can experience all common problems that are associated with hypertension including damaged blood vessels, accelerated atherosclerosis, and increased risk of heart disease and stroke, and (c) higher cholesterol and triglyceride levels in the bloodstream which increases the risk of plaque and thus could lead to coronary artery disease (CAD) or heart attack (Lewington et al. 2002). In summary, in certain individuals, stress leads to deterioration of the CV system “directly” through activation of neuroendocrine stress pathways and initializing atherosclerosis or “indirectly” through unhealthy lifestyle behaviors such as smoking, alcohol consumption, diet, and lack of physical activity which encourage CV risk factors such as high cholesterol level, overweight, poor dietary habits (Perk et al. 2012). This OSRev confirmed that work-related stress is an important social determinant of CV diseases and mortality. However, there is little longitudinal evidence on the mechanisms which cause cumulative stress at work to affect an employee’s health. The way how stressful conditions are translated into changes in disease patterns is also not completely clear in the evidence (Perk et al. 2012). Such mechanisms and the psychosocial pathways that might mediate the effect of exposures to job stress should be the object of more theorization and testing in the future (Chandola et al. 2008; Eller et al. 2009). Work life is in continuous change; studies on work life changes are lacking (Kivimäki et al. 2012). An example of such changes is organizational downsizing due to which increases in JS and ERI among those who keep working is expected (Kivimäki et al. 2012). Moreover, it is advisable to jointly consider work and out-of-work-related conditions that encourage stress. However, due to insufficient evidence, more research is needed to evaluate also single risk factors (Kivimäki et al. 2012). Potential stress factors such as the low socio-economic status, lack of social support, crisis or conflicts in family life (Eaker et al. 2007), bullying at work, depression, anxiety, hostility, type D personality (Perk et al. 2012; Backé et al. 2012), genetic predisposition, and financial strain could contribute to the development of CVD, worsening of clinical course, and their prognosis. The meta-analysis of (Kivimäki et al. 2006) showed that the association between work-related stress and CHD significantly decreased after adjustment for covariates, such as socioeconomic position, body mass index, blood pressure, cholesterol concentration, smoking, and sedentary lifestyle. Employees experiencing chronic work-related stress and who, in addition, are socially isolated or lonely have an increased risk of a first coronary heart disease event (Steptoe and Kivimäki 2012). Furthermore, consideration of

13

Int Arch Occup Environ Health

other work-related factors (e.g., noise, cold, physical workload, shift work, overtime work, exposures to toxic chemicals) and the enquiry of several lifestyle factors and interactions between risk factors would allow developing new concepts concerning the multifactorial etiology and prevention of CVD (Backé et al. 2012; Kivimäki et al. 2012). Such data need to be stratified for potential effect modifiers such as age groups, gender, occupation, and occupational group. Based on only two case control studies, Belkic et al. (2004) report that shift work does not confound the association between job stress and MI. Although the importance of long working hours is emphasized in several observations considered in all SRevs, none of the SRevs adjusted for risk estimates for working long hours in a high-strain job. According to Belkic et al. (2004), physical factors such as heavy lifting, vibration, noise, and extreme heat or cold are considered potentially harmful to the CV system (especially as possible trigger mechanisms). However, seems that little evidence linking these exposures to hard CV outcomes is available. The correlation between exposure to job strain (conflicting demands, work pace, and decision latitude) and CV morbidity or mortality could be due to several non-causal mechanisms which include confounding by negative affect, health behaviors, or social class additionally to reverse causation where individuals with underlying poor health may rate their jobs as more stressful (Frese and Zapf 1988). According to the Whitehall II study, greater work stress (self-reported) was associated with poorer health behaviors in terms of eating less fruit and vegetables or less physical activity (Chandola et al. 2008). On the other hand, the long latency period between exposure to some distant risk factors and development of CVD as well as the multi-etiological character of CVD makes the differentiation between individual causal risk factors or risk markers difficult (Kivimäki et al. 2006). Groups at higher risk Attempts to prevent CVD started decades ago by suggesting two different approaches to etiology, respectively, in benefit of the population as a whole (seeking to control the determinants of CVD incidence) and the population at risk (intending the individual protection) (Rose 1985). The European Guidelines on CVD Prevention in Clinical Practice suggests that preventive efforts should be lifelong—from birth to old age and recommends stress management programs at least for individuals at high risk (Perk et al. 2012). It is, however, not easy to identify the groups at higher risk since the same environmental stressors are unlikely to induce similar stress reactions in the entire population. For these reasons, risk profiles for people exposed to work stress need to be established and validated in future

Int Arch Occup Environ Health

studies (Kivimäki et al. 2012) followed by intensive public health and individual preventive efforts (Perk et al. 2012). Among the psychosocially stressed working population, some, but insufficient, evidence is available and obviously more primary research is necessary for risk groups such as elderly and young employees where consideration of gender, occupation, and occupational level is crucial. There is also little evidence on the benefit these prevention programs convey, especially for the population at high risk and in a specific occupation or occupational group. More stress management intervention studies are needed to validate the benefits of such proposed programs. Availability of evidence on job stress interventions There is a clear need for primary large-scale work stress intervention studies with long follow-up periods aiming to examine the effects of new actions for lowering work stress and changing the work organization (e.g., changes related to demands, decision-making latitude, and quality of leadership). An example is the reduction of working time, which has shown favorable changes in mediators relevant to the CV system such as blood pressure or the catecholamine and lipid profile (Belkic et al. 2004). The best way to measure the success of interventions would be to measure subclinical changes rather than long-term outcomes such as CV mortality (Backé et al. 2012). Such intervention studies may improve the understanding of both causality and means of prevention (Kivimäki et al. 2012). Age aspect Length of exposure would be important, especially, for the younger employees because they often perceive stressors as more uncontrollable, and in contrast to the elderly, this population group is less likely to be under the effect of other risk factors (Eller et al. 2009). Consequently, more studies on younger population groups would be advisable in order to make the negative influence of psychosocial working conditions on health more evident. Aging workers were part of the target population in all SRevs, which could increase the risk of “healthy worker effect”. In his metaanalysis, Kivimäki et al. (2006) estimated the age and gender-adjusted relative ratio of CHD for high versus low job strain to 1.43 (1.15–1.84). In another study (Kivimäki et al. 2012), when participants of all ages were included, the HR was 1.35, but when only those aged 19–55 at baseline were included, it rose to 1.82.

specific (Belkic et al. 2004). Gender is certainly a critical further effect modifier for which stratified analysis is essential. Most reported significant associations between psychosocial stress at work and CV outcomes came from analyses considering only men (Backé et al. 2012; Eller et al. 2009). Backé et al. (2012) concur that a generalization of study results from men to women would not be applicable because there are gender differences for the influence of job stress on CVD. Rather than merely adjusting for gender, studies measuring the association between job stress and CV outcomes could test hypotheses separately for men and women, either through stratified analyses or by testing interactions with gender. Stress perception may also be different for women than for men. Mediators such as marital strain, family responsibilities, and strain due to multiple roles or lack of reciprocal supportive relationship may be particularly significant for women only, while work-related stress may be less important. Impact of the culture and geographical diversity Among other risk factors, culture and country of origin of the target population might also have an effect on the association between stress at work and CV outcomes. Three SRevs enrolled in this overview (Eller et al. 2009; Kivimäki et al. 2006; Netterstrøm and Kristensen 2005) report that the studies they considered were mainly conducted in the United States and Europe. The meta-analysis (Kivimäki et al. 2012) noted differences in the effect of job stress on CHD between studies from Nordic countries, continental Europe, and the UK. The information was, however, insufficient to conclude whether a cultural variability existed. Due to such variability, a degree of misclassification may happen in countries in which health care is not for free (for instance in the US). In such countries, individuals with lower incomes might not have enough financial resources to cover all necessary expenses of their treatment or hospitalization; in contrast, the ones with high incomes may be over-treated and over-examined leading to the overrepresentation or underrepresentation of the individuals with higher or lower socioeconomic status, respectively (Eller et al. 2009). Furthermore, more than 80 % of all CV mortality occurs in the developing countries (Perk et al. 2012). The available literature is based only on developed countries. There is also lack of country-based research also differentiating developing from developed countries.

Gender differences

Job stress and validity of instruments that are used to measure stress

The nature of job exposures and patterns of CV manifestation and age-related prevalence is also highly gender

Due to many existing and continuously improving theoretical ways to define and evaluate load and strain, measuring

13



stress at work was not easy (Nubling et al. 2006). In this OSRev, JS was mainly measured with the help of theoretical models were the job strain model (Karasek et al. 1998; Karasek 1979; Karasek and Theorell 1990) was the mostly used model. However, the quality and consequently, the reliability on stress models is often being criticized. While external or “objective” reporting can be influenced by the subjectivity of the expert, self or “subjective” reporting is also known to be prone to bias due to over or underreporting on environmental conditions (Theorell and Hasselhorn 2005). However, it still remains questionable whether workers in identical or similar working environments respond highly similarly to the Job Content Questionnaire (JCQ) used for the job strain model (Karasek et al. 1998; Karasek 1979; Karasek and Theorell 1990). For example, the Whitehall II study found a significant relationship between low decision latitude and risk of MI when using expert reporting of the work exposure. In this study, external measures of job characteristics were associated more strongly with higher rates of sickness absence compared with self-assessed reporting for low frequency and fast work pace and lower conflicting demands (Rehkopf et al. 2010). Also Persson et al. (2012) report large variations on how workers from the same industry with similar working conditions and conducting similar work responded to the JCQ. Although there are stress-theoretical models, a standardization in the assessment of stressors at work does not exist. A variety of measurement instruments is being used to assess work stressors among studies included in each SRev. Furthermore, many studies modified the standard questionnaires or stress scales. Kivimäki et al. (2012) report that while the measure of job strain in all of the studies using the JS model is generated by cross-tabulating the dichotomized or trichotomized scales of job demands and job control, the items included in these scales often vary between the studies. Furthermore, at present, there is no agreement whether the two dimensions of high demands or low control observed separately have stronger effects on CV health than the concept of ‘job strain’ that is based on both scales, demand, and control (Eller et al. 2009; Belkic et al. 2004). Regarding the ERI model, the item content of the scales varied between the studies, as well (Kivimäki et al. 2006). In such circumstances, the usage of models could in fact be a risk of bias itself. If you want to answer questions using a stress model, you might overlook and consequently underestimate some risks. Using the same instrument to measure the correlation between exposure and outcome is therefore advisable. On the other hand, work life is in continuous change and therefore linked to new types of stressors that need to be considered in the theoretical stress models which are used as instruments to evaluate stress. In such a situation,

13

Int Arch Occup Environ Health

updating the existing theoretical models and inclusion of further dimensions are advisable. More studies with sophisticated assessment of the development of job stress over time and its impact over health are necessary (Backé et al. 2012). The ERI model, organizational injustice, and job insecurity are examples of new theories that have to be evaluated in future studies before determining the effect of the included dimensions (Eller et al. 2009). Dose–response relationship between work‑related stress and CVD This OSRev confirmed that although enrolled reviews due to lacking information (in primary studies exposure was measured only in one point in time) could not measure a dose–response relationship, they agree that a correlation between work-related stress and CV morbidity and mortality exists. Belkic et al. (2004) found that employees working under same or similar conditions and are exposed to high levels of job strain (high or intermediate demands and low control) are at higher risk than the ones exposed to intermediate job strain levels. Consistent with a prospective cohort study (Kivimäki et al. 2002), Belkic et al. (2004) report indirect evidence of a temporal dose–response relationship based on a stratified analysis with workers whose occupational group did not change for over 5 years. This group of workers revealed a higher hazard ratio (HR 2.9, 95 % CI 1.25–6.71) compared to the whole cohort. Furthermore, several studies enrolled in the SRev of Belkic et al. (2004) found a dose–response effect for decision latitude alone and risk of incident CVD, but no dose–response relationship was found for CV mortality. In general, there were few longitudinal studies examining the effect of cumulative work stress on other intermediate mechanisms despite the evidence that chronic stress predicts CV morbidity and mortality (Chandola et al. 2008; Kivimäki et al. 2006). Three SRevs (Backé et al. 2012; Eller et al. 2009; Kivimäki et al. 2006) report that most of the studies that included assessed exposure to job stress only at one point in time (only at baseline). Exposure measures at different points in time were not reported from any other included SRev. Individual studies confirmed that measuring exposure at different points in time would change the results. For example, within the Whitehall study, temporally increased exposure in men (using ERI score) was statistically significantly related to the development of angina pectoris (Chandola et al. 2005). Measuring exposure only at baseline may be sufficient when workers experience the same level of exposure to job stress during the follow-up period, but in case a negative change in exposure happened during the follow-up (e.g., due to job change), a re-evaluation of exposure would be important. After a temporary increase in work stress, the atherosclerotic condition

Int Arch Occup Environ Health

could progress with a different (higher) rate than otherwise. A significant change in exposure occurs when individuals retire; therefore, follow-up beyond the retirement age is not advisable (Eller et al. 2009). Examining cumulative exposures and showing dose–response relationships would contribute to a causal understanding of this association.

The methodology of conducting such overviews of systematic reviews needs improvement. We were unable to recommend a specific instrument for reaching judgments, e.g., about the possible influence of the amount of study overlap over the study conclusions. A checklist to evaluate the quality of such OSRev does not exist yet either.

Diversity in professions and occupational groups

Potential biases in the search process

High perceived stress is seen in (a) specific professions such as nurses or teachers; (b) specific groups of workers in precarious employment situations such as subcontractors or temporary or leased workers, but also among the (c) highskilled, motivated, and dedicated ones. Furthermore, there are more and more high-qualified employees struggling with high demands. Several investigations such as the large Whitehall study (Chandola et al. 2008) report that stress varied among workers in different occupational levels such as office-based workers (so-called “white-collar workers”) and manual workers (“blue-collar workers”). It is seen that also higher qualified workers such as managers with a secure and well-paid job work under bad conditions, e.g., under high demands, are consequently prone to all possible stress-related outcomes. None of the enrolled SRevs report on the CV morbidity or mortality due to perceived stressors among different occupational groups of the same occupation or industry. We noticed an obvious deficit in studies evaluating psychosocial conditions at specific occupations and occupational groups and CV outcomes.

The systematic literature search was run in two relevant electronic databases (PubMed and EMBASE) and was followed by a manual search. Further databases were not searched which means that some relevant publications may have been missed. However, given the fact that we searched manually in addition to the two biggest and most relevant databases, we assume that we could not have missed any relevant SRevs. Furthermore, we only considered studies published in a European language which means that, although non-English studies usually publish at least the title or also an abstract in English, a small probability of having missed such studies exists. During the literature screening, we did not find such publications; therefore, we believe that the language limitation did not bias our searching results. For the literature search, we decided to use the more “specific” search string for occupational health studies (Mattioli et al. 2010) which is capable of retrieving more than 40 % of the relevant publications (specificity of 98 %, sensitivity of 47 %). Using the “specific” string, a high proportion of articles that do not fulfill our predefined criteria are excluded, a limited number of articles but precisely fitting to our PICOS question are found and the smallest number of false positive articles is yielded.

Potential biases Potential biases in the overview process Overviews of reviews are only as good as the SRevs and primary studies on which they are based; gaps or lack of consistency in this evidence will weaken the overview of reviews. Although this OSRev was performed in a systematic way by strictly following the predefined criteria and was based on a rigorous protocol developed at the outset, we realized that due to its complexity, conducting an OSRev is not easy. Using the data of existing SRevs and drawing conclusions based on their results is a complex procedure. Each enrolled SRev would generally bring an amount of bias with it, especially because they are also based on other (primary) studies, which are a source of bias themselves. As example, authors of enrolled SRevs partially used different standards and also different instruments to validate the quality of the enrolled primary studies. Subsequently, in some cases, the same studies appeared to have different quality. Although in this OSRev we applied an up-to-date methodology and even introduced new actions, e.g., the Plot of Study Overlap Matrix, we realized that the risk of combining “apples and oranges” exists.

Study diversity Although studies enrolled in each SRev partially overlapped, different interpretation of the results with respect to slightly different key research question(s) is possible. Investigations considered in all enrolled SRevs varied in reporting on exposure, outcomes, statistical models used and considered confounders such as biological and behavioral risk factors. Eller et al. (2009) report that, in some cases, studies were hard to compare, especially with regard to the different cultures, which might be a reason of unequal stress perception, and in reference to gender and age. A meta-analysis of individual participant data (IPD) from 197,473 European men and women based on 13 cohort studies (Kivimäki et al. 2012) was not included in this OSRev, since it was not based on an SRev. The study found a significant increase in incident CHD due to job strain based on one baseline assessment. Using non-randomized observational data, it could not make any conclusions on the

13



causality of the findings and could not exclude residual confounding as an alternative explanation for the findings.

Int Arch Occup Environ Health

Author’s conclusions Key messages and needs for further research

Publication bias Due to the publication bias, published studies may not truly represent all accurate studies carried out, which may alter the results of meta-analyses and SRevs of big numbers of studies on which evidence-based medicine increasingly relies. The problem may be, especially important when the study is sponsored by entities that are interested in positive results. The collaborative meta-analysis of individual participant data from 13 cohort studies on job strain and CHD incidence found a small heterogeneity in study-specific estimates (overall HR: 1.23; 95 % CI 1.10–1.37) for job strain vs. no job strain (Kivimäki et al. 2012). Furthermore, a considerable difference in the association between job strain and CHD was noticed between published and unpublished studies (respectively, HR: 1.43; 95 % CI 1.15–1.77 and HR: 1.16; 95 % CI 1.02–1.32). In this OSRev, it was hard to avoid the publication bias because each SRev brought some risk of publication bias with it; however, all included SRevs had no conflict of interest. The sponsors of each SRev had no role in the study design, data collection, data analysis, data interpretation, or writing of the report. Information bias, underestimation or overestimation of the effect Backé et al. (2012) reported that some of the studies included in the SRev had a long follow-up duration. In such a situation, there is a risk of information bias unless job stress remains stable and employees do not change their job or experience periods of unemployment. Job change due to stress would underestimate the effect, especially in individuals at risk. In the Whitehall study, the effect of ERI on CV health indicated higher risk estimates after an average follow-up time of 5.3 years (Bosma et al. 1998) than after a follow-up time of 11 years (Kuper et al. 2002). However, the outcome of the two analyses differs Bosma et al. (1998) consider CV morbidity and mortality and Kuper et al. (2002) only CV morbidity. The possible conclusion of an underestimation of true effect estimates in long-term studies needs further investigations. Many studies included in each SRev might be too small to detect possible associations. A recent SRev (Pejtersen et al. 2014) that aimed to update the findings of Eller et al. (2009) by applying a stricter methodology (only papers with a high statistical power were considered) suggests that measuring an association based on studies with high statistical power is important when evaluating published studies.

13

Work-related stress is an important determinant of CV disease and mortality. Thus, cardiovascular diseases caused by work stress as one risk factor beside others can be ranked as work related according to the definition of the International Labour Organisation “a disease with multiple causal agents, where factors in the work environment play a role, together with other risk factors” (European Commission 2013). When work-related stress is considered as one of several risk factors for cardiovascular diseases, there is a need to address this issue within prevention strategies offered by occupational physicians as well as general practitioners. Further research is necessary to: (a) evaluate the mechanisms and psychosocial pathways that might mediate the effect of job stress on employee’s health, (b) evaluate the in and out-of-work factors that encourage stress separately and in combination, (c) focus on groups at higher risk and validate the newly established risk profiles of the ones exposed to psychosocial stress at work, (d) measure the exposure in different points in time, (e) consider additional and up-to-date potential stressors in the changing working environment without limiting evaluation of stress to existing stress models, (f) evaluate whether a cultural variability exists and consider the developed and developing countries separately, (g) consider the target population grouped, e.g., with regard to gender, age, occupation and occupational level, (h) improve the ways for analyzing job stressors, and (i) aim to measure the dose– response relationship between the exposure and outcome. Implications for policy and practice In a nutshell, this overview can be used to: (a) disseminate an up-to-date information on work-related stress as a risk factor for CV morbidity and mortality to government, health care providers, workers, and other stakeholders; and (b) encourage governments to better regulate the working conditions and consider work-related psychosocial stress as a hazardous factor that leads to CV diseases or mortality, which would indirectly lead to improved workers` health quality. Acknowledgments  We are grateful to Ms. Lena Isotalo for running the search in the EMBASE database, to Ms. Merete Labriola for the translation of one paper, and to Dr. Herman Burr, Dr. Ulrike Euler, Dr. Beate Weikert, and Prof. Dr. Ute Latza and for their valuable comments on the paper. Conflict of interest  The authors declare that they have no conflicts of interest. Open Access  This article is distributed under the terms of the Creative Commons Attribution License which permits any use,

Int Arch Occup Environ Health distribution, and reproduction in any medium, provided the original author(s) and the source are credited.

References Aboa-Éboulé C, Brisson C, Maunsell E, Bourbonnais R, Vézina M, Milot A, Dagenais GR (2011) Effort-reward imbalance at work and recurrent coronary heart disease events: a 4-year prospective study of post-myocardial infarction patients. Psychosom Med 73(6):436–447. doi:10.1097/PSY.0b013e318222b2d8 Backé EM, Seidler A, Latza U, Rossnagel K, Schumann B (2012) The role of psychosocial stress at work for the development of cardiovascular diseases: a systematic review. Int Arch Occup Environ Health 85:67–79. doi:10.1007/s00420-011-0643-6 Belkic KL, Landsbergis PA, Schnall PL, Baker D (2004) Is job strain a major source of cardiovascular disease risk? Scand J Work Environ Health 30:85–128 Black PH (2003) The inflammatory response is an integral part of the stress response: implications for atherosclerosis, insulin resistance, type II diabetes and metabolic syndrome X. Brain Behav Immun 17:350–364 Black PH (2006) The inflammatory consequences of psychologic stress: relationship to insulin resistance, obesity, atherosclerosis and diabetes mellitus, type II. Med Hypotheses 67:879–891 Bosma H, Peter R, Siegrist J, Marmot M (1998) Two alternative job stress models and the risk of coronary heart disease. Am J Public Health 88(1):68–74 Chandola T, Siegrist J, Marmot M (2005) Do changes in effortreward imbalance at work contribute to an explanation of the social gradient in angina? Occup Environ Med 62(4):223–230. doi:10.1136/oem.2004.016675 Chandola T, Britton A, Brunner E, Hemingway H, Malik M, Kumari M, Badrick E, Kivimäki M, Marmot M (2008) Work stress and coronary heart disease: what are the mechanisms? Eur Heart J 29:640–648. doi:10.1093/eurheartj/ehm584 Conroy RM, Pyorala K, Fitzgerald AP, Sans S, Menotti A, De BG, De BD, Ducimetiere P, Jousilahti P, Keil U, Njolstad I, Oganov RG, Thomsen T, Tunstall-Pedoe H, Tverdal A, Wedel H, Whincup P, Wilhelmsen L, Graham IM (2003) Estimation of ten-year risk of fatal cardiovascular disease in Europe: the SCORE project. Eur Heart J 24:987–1003 Eaker ED, Sullivan LM, Kelly-Hayes M, D’Agostino RB Sr, Benjamin EJ (2007) Marital status, marital strain, and risk of coronary heart disease or total mortality: the Framingham Offspring Study. Psychosom Med 69:509–513 Eller NH, Netterstrøm B, Gyntelberg F, Kristensen TS, Nielsen F, Steptoe A, Theorell T (2009) Work-related psychosocial factors and the development of ischemic heart disease: a systematic review. Cardiol Rev 17:83–97. doi:10.1097/CRD.0b013e318198c8e9 Elovainio M, Kivimäki M, Vahtera J (2002) Organizational justice: evidence of a new psychosocial predictor of health. Am J Public Health 92:105–108 Elovainio M, Heponiemi T, Sinervo T, Magnavita N (2010) Organizational justice and health; review of evidence. G Ital Med Lav Ergon 32:B5–B9 European Commission (2013) Report on the current situation in relation to occupational diseases’ systems in EU member states and EFTA/EEA countries, in particular relative to commission recommendation 2003/670/EC concerning the European schedule of occupational diseases and gathering of data on relevant related aspects. http://www.google.de/url?sa=t&rct=j&q=&esrc=s&so urce=web&cd=1&cad=rja&uact=8&ved=0CCMQFjAA&url =http%3A%2F%2Fec.europa.eu%2Fsocial%2FBlobServlet%3F

docId%3D9982%26langId%3Den&ei=hAtiVIDsIMf6PPyXgbg B&usg=AFQjCNHLLUseX2Vt-_rIsTvTqkuH4CR2jw&bvm=b v.79189006,d.ZWU. Accessed 11 Nov 2014 Frese M, Zapf D (1988) Methodological issues in the study of work stress: objective vs. subjective measurement of work stress and the question of longitudinal studies. In: Cooper C, Payne R (eds) Causes, coping, and consequences of stress at work. John Willey and Sons Ltd.p, New York, pp 375–411 Johnson JV, Hall EM, Theorell T (1989) Combined effects of job strain and social isolation on cardiovascular disease morbidity and mortality in a random sample of the Swedish male working population. Scand J Work Environ Health 15:271–279 Karasek RA (1979) Job Demands, Job Decision Latitude, and Mental Strain: implications for Job Redesign. Adm Sci Q 24:285–308 Karasek R, Theorell T (1990) Healthy work: stress, productivity and the reconstruction of working life. Basic Books, New York Karasek R, Brisson C, Kawakami N, Houtman I, Bongers P, Amick B (1998) The Job Content Questionnaire (JCQ): an instrument for internationally comparative assessments of psychosocial job characteristics. J Occup Health Psychol 3:322–355 Kivimäki M, Leino-Arjas P, Luukkonen R, Riihimaki H, Vahtera J, Kirjonen J (2002) Work stress and risk of cardiovascular mortality: prospective cohort study of industrial employees. BMJ 325:857 Kivimäki M, Virtanen M, Elovainio M, Kouvonen A, Vaananen A, Vahtera J (2006) Work stress in the etiology of coronary heart disease-a meta-analysis. Scand J Work Environ Health 32:431–442 Kivimäki M, Nyberg ST, Batty GD, Fransson EI, Heikkila K, Alfredsson L, Bjorner JB, Borritz M, Burr H, Casini A, Clays E, De BD, Dragano N, Ferrie JE, Geuskens GA, Goldberg M, Hamer M, Hooftman WE, Houtman IL, Joensuu M, Jokela M, Kittel F, Knutsson A, Koskenvuo M, Koskinen A, Kouvonen A, Kumari M, Madsen IE, Marmot MG, Nielsen ML, Nordin M, Oksanen T, Pentti J, Rugulies R, Salo P, Siegrist J, Singh-Manoux A, Suominen SB, Vaananen A, Vahtera J, Virtanen M, Westerholm PJ, Westerlund H, Zins M, Steptoe A, Theorell T (2012) Job strain as a risk factor for coronary heart disease: a collaborative metaanalysis of individual participant data. Lancet 380(9852):1491– 1497. doi:10.1016/S0140-6736(12)60994-5 Kuper H, Singh-Manoux A, Siegrist J, Marmot M (2002) When reciprocity fails: effort–reward imbalance in relation to coronary heart disease and health functioning within the Whitehall II study. Occup Environ Med 59(11):777–784. doi:10.1136/ oem.59.11.777 Landsbergis P, Theorell T, Schwartz J, Greiner BA, Krause N (2000) Measurement of psychosocial workplace exposure variables. Occup Med 15:163–188 Lewington S, Clarke R, Qizilbash N, Peto R, Collins R (2002) Agespecific relevance of usual blood pressure to vascular mortality: a meta-analysis of individual data for one million adults in 61 prospective studies. Lancet 360:1903–1913 Liberati A, Altman DG, Tetzlaff J, Mulrow C, Gotzsche PC, Ioannidis JP, Clarke M, Devereaux PJ, Kleijnen J, Moher D (2009) The PRISMA statement for reporting systematic reviews and meta-analyses of studies that evaluate health care interventions: explanation and elaboration. J Clin Epidemiol 62:e1–e34. doi:10.1016/j.jclinepi.2009.06.006 Low CA, Thurston RC, Matthews KA (2010) Psychosocial factors in the development of heart disease in women: current research and future directions. Psychosom Med 72:842–854. doi:10.1097/ PSY.0b013e3181f6934f Mattioli S, Zanardi F, Baldasseroni A, Schaafsma F, Cooke RM, Mancini G, Fierro M, Santangelo C, Farioli A, Fucksia S, Curti S, Violante FS, Verbeek J (2010) Search strings for the study of putative occupational determinants of disease. Occup Environ Med 67:436–443. doi:10.1136/oem.2008.044727

13

Moher D, Liberati A, Tetzlaff J, Altman DG (2009) Preferred reporting items for systematic reviews and meta-analyses: the PRISMA statement. PLoS Med 6:e1000097. doi:10.1016/j. jclinepi.2009.06.005 Netterstrøm B, Kristensen TS (2005) Psychosocial factors at work and ischemic heart disease. Ugeskr Laeger 167:4348–4355 Nubling M, Stossel U, Hasselhorn HM, Michaelis M, Hofmann F (2006) Measuring psychological stress and strain at work—evaluation of the COPSOQ Questionnaire in Germany. Psychosoc Med 3:1–14 Ohlin B, Nilsson PM, Nilsson JA, Berglund G (2004) Chronic psychosocial stress predicts long-term cardiovascular morbidity and mortality in middle-aged men. Eur Heart J 25:867–873 Pejtersen JH, Burr H, Hannerz H, Fishta A, Eller NH (2014) Update on work-related psychosocial factors and the development of ischemic heart disease. A systematic review. Cardiol Rev. doi:10.1097/CRD.0000000000000033 Perk J, De BG, Gohlke H, Graham I, Reiner Z, Verschuren M, Albus C, Benlian P, Boysen G, Cifkova R, Deaton C, Ebrahim S, Fisher M, Germano G, Hobbs R, Hoes A, Karadeniz S, Mezzani A, Prescott E, Ryden L, Scherer M, Syvanne M, Scholte op Reimer WJ, Vrints C, Wood D, Zamorano JL, Zannad F (2012) European guidelines on cardiovascular disease prevention in clinical practice (version 2012). The fifth joint task force of the European Society of Cardiology and other societies on cardiovascular disease prevention in clinical practice (constituted by representatives of nine societies and by invited experts). Developed with the special contribution of the European Association for Cardiovascular Prevention & Rehabilitation (EACPR). Eur Heart J 33:1635– 1701. doi:10.1007/s12529-012-9242-5 PEROSH (2011) OSH Evidence, Clearinghouse of systematic reviews. Methods http://www.perosh.eu/osh-evidence-systematic-review-clearinghouse-methods. Accessed 1 Aug 2012 Persson R, Hansen AM, Garde AH, Kristiansen J, Nordander C, Balogh I, Ohlsson K, Ostergren PO, Orbaek P (2012) Can the job content questionnaire be used to assess structural and organizational properties of the work environment? Int Arch Occup Environ Health 85:45–55. doi:10.1007/s00420-011-0647-2 Rehkopf DH, Kuper H, Marmot MG (2010) Discrepancy between objective and subjective measures of job stress and sickness absence. Scand J Work Environ Health 36:449–457 Rose G (1985) Sick individuals and sick populations. Int J Epidemiol 14:32–38 Schaafsma F, Hulshof C, Verbeek J, Bos J, Dyserinck H, Van Dijik F (2006) Developing search strategies in Medline on the occupational origin of diseases. Am J Ind Med 49:127–137

13

Int Arch Occup Environ Health Siegrist J (1996) Adverse health effects of high-effort/low-reward conditions. J Occup Health Psychol 1:27–41 Siegrist J, Peter R, Junge A, Cremer P, Seidel D (1990) Low status control, high effort at work and ischemic heart disease: prospective evidence from blue-collar men. Soc Sci Med 31:1127–1134 SIGN (2012) Methodology checklist: systematic reviews and metaanalyses. SIGN 50: a guideline developer’s handbook. http:// www.sign.ac.uk/pdf/sign50.pdf. Accessed 2 Oct 2012 Steptoe A, Kivimäki M (2012) Stress and cardiovascular disease. Nat Rev Cardiol 9(6):360–370. doi:10.1038/nrcardio.2012.45 Theorell T, Hasselhorn HM (2005) On cross-sectional questionnaire studies of relationships between psychosocial conditions at work and health—are they reliable? Int Arch Occup Environ Health 78:517–522 Verbeek J, Salmi J, Pasternack I, Jauhiainen M, Laamanen I, Schaafsma F, Hulshof C, Van Dijk F (2005) A search strategy for occupational health intervention studies. Occup Environ Med 62:682–687 Virtanen M, Nyberg ST, Batty GD, Jokela M, Heikkila K, Fransson EI, Alfredsson L, Bjorner JB, Borritz M, Burr H, Casini A, Clays E, De Bacquer D, Dragano N, Elovainio M, Erbel R, Ferrie JE, Hamer M, Jockel KH, Kittel F, Knutsson A, Koskenvuo M, Koskinen A, Lunau T, Madsen IE, Nielsen ML, Nordin M, Oksanen T, Pahkin K, Pejtersen JH, Pentti J, Rugulies R, Salo P, Shipley MJ, Siegrist J, Steptoe A, Suominen SB, Theorell T, Toppinen-Tanner S, Vaananen A, Vahtera J, Westerholm PJ, Westerlund H, Slopen N, Kawachi I, Singh-Manoux A (2013) Perceived job insecurity as a risk factor for incident coronary heart disease: systematic review and meta-analysis. BMJ 347:f4746. doi:10.1136/bmj.f4746 Walter SD (1991a) The ecologic method in the study of environmental health. I. Overview of the method. Environ Health Perspect 94:61–65 Walter SD (1991b) The ecologic method in the study of environmental health. II. Methodologic issues and feasibility. Environ Health Perspect 94:67–73 WHO (2010) International statistical classification of diseases and related health problems, 10th revision (ICD-10). WHO library cataloguing 2 [2010 Edition], 1–201 Malta, WHO 26-2-2013. http://www.who.int/entity/classifications/icd/ICD10Volume2_ en_2010.pdf?ua=1. Accessed 12 March 2013 WHO (2011) Cardiovascular diseases (CVDs). Key facts. http://www. who.int/mediacentre/factsheets/fs317/en. Accessed 28 Feb 2012

Psychosocial stress at work and cardiovascular diseases: an overview of systematic reviews.

Based on information reported in systematic reviews (SRevs), this study aimed to find out whether psychosocial stress at work leads to cardiovascular ...
473KB Sizes 0 Downloads 4 Views